Analytics Solution for Product Quality Analysis in Manufacturing

Thesis title: Analytics Solution for Product Quality Analysis in Manufacturing
Author: Selvarajan Prasanna, Ashik
Thesis type: Diploma thesis
Supervisor: Potančok, Martin
Opponents: Zimmermann, Pavel
Thesis language: English
Abstract:
This thesis explores the integration of data analytics and effective data management to enhance product quality analysis in manufacturing. The aim is to develop an analytics solution model using publicly available data, focusing on its impact on manufacturing processes. Key research questions address the strategic use of data analytics in product quality analysis and its effect on manufacturing outcomes. The literature review synthesises influential works in manufacturing, Industry 4.0, predictive analytics, and data mining. The proposed methodology involves building a Python-based analytics solution model using open data repositories for manufacturing data. Expected outcomes include best practices for data quality, an analytics solution model for quality assurance, and insights into the relationship between process conditions and product quality. The thesis structure encompasses an introduction, literature review, methodology, results analysis, discussion, conclusion, and references, with potential appendices containing code snippets.
Keywords: Data Analytics; Data Preprocessing; Industry 4.0; Key Performance Indicators (KPIs); Manufacturing Industry; LSTM (Long Short-Term Memory); Operational Efficiency; Predictive Analytics; Predictive Maintenance; Proactive Quality Control; Product Quality Analysis; Random Forest; Resource Optimization; Anomaly Detection; Real-Time Monitoring
Thesis title: Analytics Solution for Product Quality Analysis in Manufacturing
Author: Selvarajan Prasanna, Ashik
Thesis type: Diplomová práce
Supervisor: Potančok, Martin
Opponents: Zimmermann, Pavel
Thesis language: English
Abstract:
This thesis explores the integration of data analytics and effective data management to enhance product quality analysis in manufacturing. The aim is to develop an analytics solution model using publicly available data, focusing on its impact on manufacturing processes. Key research questions address the strategic use of data analytics in product quality analysis and its effect on manufacturing outcomes. The literature review synthesises influential works in manufacturing, Industry 4.0, predictive analytics, and data mining. The proposed methodology involves building a Python-based analytics solution model using open data repositories for manufacturing data. Expected outcomes include best practices for data quality, an analytics solution model for quality assurance, and insights into the relationship between process conditions and product quality. The thesis structure encompasses an introduction, literature review, methodology, results analysis, discussion, conclusion, and references, with potential appendices containing code snippets.
Keywords: Anomaly Detection; Data Analytics; Data Preprocessing; Industry 4.0; Manufacturing Industry; Operational Efficiency; Predictive Analytics; Predictive Maintenance; Key Performance Indicators (KPIs); LSTM (Long Short-Term Memory); Proactive Quality Control; Product Quality Analysis; Random Forest; Real-Time Monitoring; Resource Optimization.

Information about study

Study programme: Information Systems Management
Type of study programme: Magisterský studijní program
Assigned degree: Ing.
Institutions assigning academic degree: Vysoká škola ekonomická v Praze
Faculty: Faculty of Informatics and Statistics
Department: Department of Information Technologies

Information on submission and defense

Date of assignment: 28. 10. 2023
Date of submission: 1. 12. 2024
Date of defense: 22. 1. 2025
Identifier in the InSIS system: https://insis.vse.cz/zp/86295/podrobnosti

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